Summary
Background: Quantification of lesion activity by FDG uptake in oncological PET is severely limited
by partial volume effects. A maximum likelihood (ML) expectation maximization (EM)
algorithm considering regional basis functions (AWOSEM-region) had been previously
developed. Regional basis functions are iteratively segmented and quantified, thus
identifying the volume and the activity of the lesion.
Objectives: Improvement of AWOSEM-region when analyzing proximal interfering hot objects is addressed
by proper segmentation initialization steps and models of spill-out and partial volume
effects. Conditions relevant to lung PET-CT studies are considered: 1) lesion close
to hot organ (e.g. chest wall, heart and mediastinum), 2) two close lesions.
Methods: CT image was considered for pre-segmenting hot anatomical structures, never for lesion
identification, solely defined by iterations on PET data. Further resolution recovery
beyond the smooth standard clinical image was necessary to start lesion segmentation.
A watershed algorithm was used to separate two close lesions. A subtraction of the
spill-out from a nearby hot organ was introduced to enhance a lesion for the initial
segmentation and start the further quantification steps. Biograph scanner blurring
was modeled from phantom data in order to implement the procedure for 3D clinical
lung studies.
Results: In simulations, the procedure was able to separate structures as close as one pixel-size
(2.25 mm). Robustness against the input segmentation errors defining the addressed
objects was tested showing that convergence was not sensitive to initial volume overestimates
up to 130%. Poor robustness was found against underestimates. A clinical study of
a small lung lesion close to chest wall displayed a good recovery of both lesion activity
and volume.
Conclusions: With proper initialization and models of spill-out from hot organs, AWOSEM-region
can be successfully applied to lung oncological studies.
Keywords
PET-CT - AWOSEM - partial volume effect correction - lesion quantification - targeted
reconstruction